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Evaluation of EMG processing techniques using Information Theory

机译:使用信息论评估EMG处理技术

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Background Electromyographic signals can be used in biomedical engineering and/or rehabilitation field, as potential sources of control for prosthetics and orthotics. In such applications, digital processing techniques are necessary to follow efficient and effectively the changes in the physiological characteristics produced by a muscular contraction. In this paper, two methods based on information theory are proposed to evaluate the processing techniques. Methods These methods determine the amount of information that a processing technique is able to extract from EMG signals. The processing techniques evaluated with these methods were: absolute mean value (AMV), RMS values, variance values (VAR) and difference absolute mean value (DAMV). EMG signals from the middle deltoid during abduction and adduction movement of the arm in the scapular plane was registered, for static and dynamic contractions. The optimal window length (segmentation), abduction and adduction movements and inter-electrode distance were also analyzed. Results Using the optimal segmentation (200 ms and 300 ms in static and dynamic contractions, respectively) the best processing techniques were: RMS, AMV and VAR in static contractions, and only the RMS in dynamic contractions. Using the RMS of EMG signal, variations in the amount of information between the abduction and adduction movements were observed. Conclusions Although the evaluation methods proposed here were applied to standard processing techniques, these methods can also be considered as alternatives tools to evaluate new processing techniques in different areas of electrophysiology.
机译:背景技术肌电信号可以在生物医学工程和/或康复领域中用作假肢和矫形器的潜在控制源。在这样的应用中,数字处理技术对于有效和有效地跟随由肌肉收缩产生的生理特征的变化是必要的。本文提出了两种基于信息论的方法来评价加工技术。方法这些方法确定处理技术能够从EMG信号中提取的信息量。用这些方法评估的处理技术是:绝对平均值(AMV),RMS值,方差值(VAR)和差值绝对平均值(DAMV)。记录了手臂在肩ular平面内展和内收运动期间来自中间三角肌的EMG信号,以进行静态和动态收缩。还分析了最佳窗口长度(分段),外展和内收运动以及电极间距离。结果使用最佳分割(静态和动态收缩分别为200 ms和300 ms),最佳处理技术为:静态收缩中的RMS,AMV和VAR,而动态收缩中仅RMS。使用EMG信号的RMS,观察到外展运动和内收运动之间信息量的变化。结论尽管此处提出的评估方法已应用于标准处理技术,但这些方法也可以视为在电生理学不同领域评估新处理技术的替代工具。

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